Using the Tools of Cognitive Science to Understand Large Language Models at Different Levels of Analysis
- URL: http://arxiv.org/abs/2503.13401v1
- Date: Mon, 17 Mar 2025 17:33:54 GMT
- Title: Using the Tools of Cognitive Science to Understand Large Language Models at Different Levels of Analysis
- Authors: Alexander Ku, Declan Campbell, Xuechunzi Bai, Jiayi Geng, Ryan Liu, Raja Marjieh, R. Thomas McCoy, Andrew Nam, Ilia Sucholutsky, Veniamin Veselovsky, Liyi Zhang, Jian-Qiao Zhu, Thomas L. Griffiths,
- Abstract summary: We argue that methods developed in cognitive science can be useful for understanding large language models.<n>We propose a framework for applying these methods based on Marr's three levels of analysis.
- Score: 46.08309259203833
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Modern artificial intelligence systems, such as large language models, are increasingly powerful but also increasingly hard to understand. Recognizing this problem as analogous to the historical difficulties in understanding the human mind, we argue that methods developed in cognitive science can be useful for understanding large language models. We propose a framework for applying these methods based on Marr's three levels of analysis. By revisiting established cognitive science techniques relevant to each level and illustrating their potential to yield insights into the behavior and internal organization of large language models, we aim to provide a toolkit for making sense of these new kinds of minds.
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